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A Novel Human Activity Recognition and Prediction in Smart Home Based on Interaction

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2019 Oct 18
PMID 31619005
Citations 17
Authors
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Abstract

Smart Homes are generally considered the final solution for living problem, especially for the health care of the elderly and disabled, power saving, etc. Human activity recognition in smart homes is the key to achieving home automation, which enables the smart services to automatically run according to the human mind. Recent research has made a lot of progress in this field; however, most of them can only recognize default activities, which is probably not needed by smart homes services. In addition, low scalability makes such research infeasible to be used outside the laboratory. In this study, we unwrap this issue and propose a novel framework to not only recognize human activity but also predict it. The framework contains three stages: recognition after the activity, recognition in progress, and activity prediction in advance. Furthermore, using passive RFID tags, the hardware cost of our framework is sufficiently low to popularize the framework. In addition, the experimental result demonstrates that our framework can realize good performance in both activity recognition and prediction with high scalability.

Citing Articles

On the Necessity of Multidisciplinarity in the Development of at-Home Health Monitoring Platforms for Older Adults: Systematic Review.

Lochhead C, Fisher R JMIR Hum Factors. 2025; 12:e59458.

PMID: 40014832 PMC: 11884709. DOI: 10.2196/59458.


X-CHAR: A Concept-based Explainable Complex Human Activity Recognition Model.

Jeyakumar J, Sarker A, Garcia L, Srivastava M Proc ACM Interact Mob Wearable Ubiquitous Technol. 2024; 7(1).

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Incremental Learning of Human Activities in Smart Homes.

Chua S, Foo L, Guesgen H, Marsland S Sensors (Basel). 2022; 22(21).

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Automated Cognitive Health Assessment Using Partially Complete Time Series Sensor Data.

Thomas B, Holder L, Cook D Methods Inf Med. 2022; 61(3-04):99-110.

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Human Activity Recognition: Review, Taxonomy and Open Challenges.

Arshad M, Bilal M, Gani A Sensors (Basel). 2022; 22(17).

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